Reconstructing dynamical systems as zero-noise limits
A dynamical system may be defined by a simple transition law - such as a map or a vector field. The objective of most learning techniques is to reconstruct this dynamic transition law. This is a major shortcoming, as most dynamic properties of interest are asymptotic properties such as an attractor...
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Zusammenfassung: | A dynamical system may be defined by a simple transition law - such as a map
or a vector field. The objective of most learning techniques is to reconstruct
this dynamic transition law. This is a major shortcoming, as most dynamic
properties of interest are asymptotic properties such as an attractor or
invariant measure. Thus approximating the dynamical law may not be sufficient
to approximate these asymptotic properties. This article presents a method of
representing a discrete-time deterministic dynamical system as the zero-noise
limit of a Markov process. The Markov process approximation is completely
data-driven. Besides proving a low-noise approximation of the dynamics the
process also approximates the invariant set, via the support of its stationary
measures. Thus invariant sets of arbitrary dynamical systems, even with
complicated non-smooth topology, can be approximated by this technique. Under
further assumptions, we show that the technique performs a convergent
statistical approximation as well as approximations of true orbits. |
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DOI: | 10.48550/arxiv.2407.16673 |